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Examining the Effects of Traditional Advertising on Online Search Behavior
Nectarios Economakis
A Thesis
In
The John Molson School of Business
Presented in Partial Fulfillment of the Requirements
For the Degree of Master of Science in Administration (Marketing) at
Concordia University
Montreal, Quebec, Canada
May 2009
© Nectarios Economakis, 2009
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Abstract
Examining the Effects of Traditional Advertising on Online Search Behavior
Nectarios Economakis
Cross-channel advertising has grown tremendously in recent years as a means to
better reach consumers. Television and the internet as well as other channels are used in
conjunction to market products. This study attempts to determine the effects of television
advertising and its impact on consumer search behavior. More specifically, how search
behavior is affected by exposure to television advertising. Actual data over a period of 78
weeks from a large Canadian telecommunications company is employed. The analysis
examines how advertising exposure and expenditure impacts search behavior for the
company's brand.
The study supports the hypothesis that traditional advertising does have a short
term impact on online search behavior for a particular brand. A lift in brand queries was
noted in relation to advertising exposure and spending albeit for a short time period. The
findings suggest that the current theory on advertising effectiveness needs to be revised to
include online effects more specifically in relation to consumer's search habits online.
Marketers that wish to study these effects must examine these effects over time and using
time series analysis. Finally, marketers must be cognizant of the synergistic effects on
online behavior and must plan their media campaigns accordingly. The link between
traditional advertising and online search behavior merits further research.
Acknowledgements
I would like to take the time to thank certain people that helped me tremendously
in the completion of this thesis. Professor Michel Laroche and Professor Jooseop Lim
provided me with tremendous feedback and direction as to where to take this project;
they helped guide me throughout the entire process and this would have not been possible
without their help. My colleagues at Media Experts also assisted me with data collection
and with the many questions I had, notably Heather Campbell who I bothered on
numerous occasions. I spent many long hours on weekends with my good friend George
Balouzakis working together on our individual theses. His help, support and friendship
helped keep my sanity. Finally, my friends, my girlfriend and family also lent their
support and never doubted me for a second despite my uncertainty. To all these people
and those 1 might have missed, I thank you dearly.
IV
Table of Contents
List of Figures vi
Chapter 1 - Introduction 1
Current State of Practice 1
Relevance of chosen topic 2
Chapter 2 - Literature Review 4
Definition of Key Concepts 4
Television Advertising Effectiveness 7
Online Advertising Effectiveness 10
Interactivity 12
Cross-Channel Effects 15
Chapter 3 - Proposal of New Research 18
Hypotheses 19
Data Collection Methodology 20
Chapter 4 - Analysis 22
Overview 22
Results 22
Chapter 5 - Summary, Limitations and Possible Future Research 32
References 38
Appendix 45
v
Appendix 1 - Where users go to research before completing an offline purchase.
(Google 2004) 40
Appendix 2 - Global Expenditure by Medium (Source Zenith Optimedia, 2007) 41
Appendix 3 - Revised Information Processing Model (Scholten 1999) 42
Appendix 4 - Results from DRTV Effectiveness Study (Danaher, Green 1997) 43
Appendix 5 - Model of Information Processing for Banner Advertisements (Yoon
2003) 44
Appendix 6 - Effect of Enduring and Situational Involvement on Interactive Behaviour
(Levy and Nebenzahl 2006) 45
Appendix 7 - Multistep model of the impact of interactivity on advertising
effectiveness (Fortin Dholakia 2005) 46
List of Figures
VI
4.1: IRF - Total Impressions on Branded keywords in response to Total Media
Impressions 20
4.2: Elasticity of Total Brand Impressions vs. Total Media Impressions 21
4.3: IRF - Total Impressions on Branded keywords in response to Total Media
Expenditure 22
4.4: Elasticity of Total Brand Impressions vs. Total Marketing Spending 22
4.5: IRF - Total Impressions on Branded keywords in response to Television
Impressions 23
4.6: Elasticity of Total Brand Impressions vs. Total Television Impressions 24
4.7: IRF - Total Impressions on Branded keywords in response to Radio Audience 26
4.8: Elasticity of Total Brand Impressions vs. Radio Audience 27
4.9: IRF - Total Impressions on Branded keywords in response to Online Display
Impressions 27
4.10: Elasticity of Total Brand Impressions vs. Online Display Impressions 28
4.11: IRF - Total Organic Clicks in response to Total Media Impressions 29
4.12: Elasticity of Total Organic Clicks vs. Media Impressions 30
4.13: T-Test Results for Each Hypothesis 39
4.14: Figure 4.14: Results of Each Hypothesis 41
VII
Examining the Effects of Traditional Advertising on Online Search Behavior
Chapter 1 - Introduction
Search engines have changed the way people look for information. Consumers head to
search engines as the first place to find information on products ( Appendix 1). The tremendous
growth of companies like Google and Yahoo can be attributed to the change in the way
consumers seek information using new technology. The effect on advertising has been quite
apparent. Internet advertising is growing rapidly and is taking budget away from more traditional
channels (Appendix 2). However, one area that is often overlooked in this discussion is how
traditional media channels affect the use of new media. The internet does not exist in a bubble
and discussion around its expansion should not neglect to mention what the role other channels
play. The focus of this study is to examine how advertising in traditional channels affects
consumer behavior in new channels; more specifically, how television advertising affects online
search behavior for a company's brand.
The hypothesis we wish to test is that an increase in advertising causes consumers to
more pro-actively search for information online for the company's brand. By examining search
engine queries, we can then correlate an increase in user searches to an increase in media
exposure
Current State of Practice
Marketers have not fully adopted an integrated marketing approach when deciding upon
their media mix. Paid listings using search engines is often not the first element of the media
1
mix. The main broadcast channels still garner the lion's share of advertising revenue (Appendix
2). However, the tide has turned and many companies have started to allocate a larger portion to
search engine marketing (Broderick 2007). The main challenge for advertisers is to integrate
search into their traditional advertising campaign. Since this new channel has only been in
existence for less than ten years, a clear methodology has not yet emerged to understand the
synergies the various channels have on each other. Few advertisers right now are examining
results from all their advertising channels in relation to their search engine marketing efforts.
One of the goals of the proposed testing methodology will be to test for effects on consumer
behavior after exposure to mass adverting channels such as television and radio; the behavior in
question is their online search habits.
Relevance of chosen topic
Consumer media behavior is rapidly changing. The effectiveness of traditional
advertising channels can now be put into question. In March 2009, there were 3.18 billion
searches conducted by Canadians across all search engines, an average of 131 searches per
searcher per month (comScore Media Metrix, April 2009). Canadians use search as an everyday
tool and marketers must better seek to understand its impact on their brand.
Employing both digital and traditional advertising channels will improve overall
advertising effectiveness (Naik, Raman 2003). Prior research has shown that the use of multiple
channels in advertising increases brand recall and attitude towards the brand. Our study is
relevant for marketers today since advertisers have more channels at their disposal.
The study is also very relevant since search behavior has rapidly shifted and its effects
are not well understood. The importance of this topic cannot be understated. Consumers are more
than ever using digital platforms to search for product information. Marketers must be fully
aware of not only the tool's potential but also how to employ these channels. Consumers using
search engines to look for information are in active mindset; they are looking for products and
services that they are interested in. A marketer can be present on search engines and will not be
interrupting the consumer's experience; they will be presenting relevant information that might
help the consumer buy their products.
3
Chapter 2 - Literature Review
Previous academic literature on synergies between online search behavior and traditional
advertising channels is fairly limited. This section will attempt to understand what previous
models have been employed to understand synergistic effects from advertising.
Since there are no prior studies that examined specifically several advertising channels'
effect on consumer online search behavior, we will first examine several key constructs. The
area of television advertising effectiveness in relation to direct response variables will be
examined. This theory lies at the heart of the study; there is a need to understand what the key
variables behind direct response television are. Next, we will turn our attention to online
advertising and search marketing in particular. The efficacy of this tool will be examined.
Furthermore, the issue of interactivity will be examined. The notion of interactivity is
crucial to understanding the effectiveness of online advertising. Next, we will inspect the issue of
cross-channel marketing and how synergistic effects occur. This is a key section of our study
since it will help us understand prior academic research and thus build our theories on existing
findings
Definition of Key Concepts
We will first examine several key definitions in order to better understand the nature of
the themes studied. A first construct we will look is advertising effectiveness. Scholten (1999)
investigates the information processing model of advertising effectiveness.
A proposed definition of advertising effectiveness is: the relationship between advertising
expenditure and brand sales, the affect of demand by establishing a hierarchy of intermediate
4
effects in its audience. Scholten examines three models of advertising effectiveness (the
hierarchy of effects paradigm, elaboration-likelihood model and the information processing
model). Scholten proposes a model of the revised information processing model (Appendix 3).
s o u r c e :
Who Communicates?
Message:
What Is Communicated
(Substance)? How Is It.
I Communicated (Style)?
Channel:
Receiveri
At whom is The
Comttmnicat ion
Targeted?
where ,
I s The
'When, And How
Cormtun i c a t i on
T r a n s m i t t e d ?
Behavior
! Retention I .
Persuasion — — — » •
Reception
r, Exposure
What 'Is The
Target Effect Of
The Communication?
Revised Information Processing Model (Scholten 1999)
5
The author states that this model provides a general framework of advertising
effectiveness since: it captures the four major classes of antecedents of advertising effects,
identifies five major classes of advertising effects, conceives advertising effectiveness as a
sequence of responses, conditions the effect of an advertising treatment on other advertising
treatments and on the marketing context in which the advertising treatments are implemented.
More concisely, the model incorporates source factors, message factors, receiver factors, channel
factors and destination factors
One particular area of interest for our study is the progression from exposure to behavior.
Consumers exposed to an advertisement can be involved with the message or not, the area that is
of interest to our study is the link between consumers that are exposed and their resulting
behavior on search engines.
An important construct that is also examined is Interactivity. This notion is important
since we will examine advertising's impact on the online consumer behavior. Liu and Shrum
(2002) propose that interactivity is the degree to which two or more communication parties can
act on each other, on the communication medium, and on the messages and the degree to which
such influences are synchronized. This notion is important to understand on the basis of our
current study. The impact of several advertising channels on consumer search behavior is an
interactive one. Consumers look for information online after having been exposed to offline and
online messages. The advertiser can reciprocate online by ensuring that its message is reinforced
on the search results page.
6
Television Advertising Effectiveness
Understanding how television advertising affects consumer behavior is an important
aspect of the proposed research model. Television advertising is the key antecedent to behavioral
change in our construct. Television advertising lies at the exposure level of advertising
effectiveness. To elicit a behavioral change, exposure to television advertising and its impact
must be understood. We will examine some key research articles in this area.
Lodish et al (1995) examined how effective advertising was in relation to sales in the
consumer packaged goods category. The authors identify four broad explanatory factors: 1)
brand and category conditions, 2) business strategies objectives, 3) media usage and 4) copy
related measures. The dependent variable that was examined was sales. They examined new
products versus existing products since the role of advertising in each category is different.
The results indicate that it is easier for less well established brands and smaller brands
than well established brands to effect a change with increased weight (in advertising). The study
calls into question the fact that there is an increased advertising response function for an
established brand. Finally, the authors find a negative relationship with increased ad weight and
sales volume changes. This article establishes television advertising's credibility for marketers. It
has shown to have an effect on sales for established and non-established brands. Therefore in the
discussion of cross-channel strategies, we will be able to suggest the employment of television
advertising as a legitimate channel for behaviour change. The target company used in our study
is an established brand and thus should be harder to effect a change with increased advertising
exposure.
Tellis et al (2000) inspect relationships of ad effectiveness in the case of direct television
advertising. Direct television is being employed more and more as a marketing tool. Direct
television calls users to take specific actions.
The authors state that previous research has shown that the effects of television
advertising on sales are significantly greater than zero but vary by market and product
characteristics. The repetition effects of advertising can be classified into three broad categories:
current effect on behaviour, carryover effect on behaviour and non-behavioural effect on attitude
and memory. The authors want to answer the question: which ad works where, when and for how
long. The study focuses on television advertising by a firm that provides a referral service for
consumers seeking a medical service. A toll free number was advertised. The customer service
representatives that answered customer phone calls made recommendations and referred the
callers to suitable service providers. Contact between service providers and customers were
called referrals. The hypothesis the authors tested is that advertising is going to have a clear,
positive effect on referrals.
The results of the analysis suggest that consumers did not respond immediately to the ad.
The referrals vary by time of day and decline in the evening. The peak usually occurs during day
time advertising. Daytime advertising decay follows an exponential decay pattern, whereas
morning advertising decay follows an inverted U-shape pattern. Finally, advertising response is
similar across markets but stronger in larger markets. The results indicate that consumers did
respond in this direct response model and carried out the appropriate action.
Danaher and Green (1997) also scrutinize the impact factors that influence the
effectiveness of direct response television advertising. Their definition of direct response
8
television advertising (DRTV) is: DRTV incorporates a response mechanism, usually via a toll-
free phone number, embedded within a conventional television advertisement. The measures of
success typically of DRTV campaigns are sales per ad, responses per ad and responses per rating
point. The authors wished to examine the factors that make DRTV advertising effective. The
data collected comprised over 700 advertising spots across 12 DRTV campaigns. Phone
responses were collected for each spot and the television advertising was based in New Zealand.
Appendix 4 shows the characteristics of the direct response television advertisements.
The results of the study indicated that Sunday and Monday have significantly higher response
rates. As reach of the population goes up, the number of responses goes down. Day parting was
found to be the most important factor along with program type. This article thus adds to the
research that television advertising, especially direct response television advertising has proven
to influence consumer behaviour.
These last articles provide important background for our study. Consumers do take
actions after consuming advertising messages. In this instance, they made a telephone call. This
shows that consumers respond using other mediums. Consumer behaviour can be said to be
affected by television advertising. One important caveat here is that the advertising message has
to be relevant and the product within the person's consideration set before this behavioural
outcome occurs. The results point to television exposure creating a change in consumer
behaviour further down the hierarchy of effects paradigm. Our study will expand upon previous
studies to incorporate the relatively new channel of search engines and study traditional
advertising's impact on online behaviour.
9
Online Advertising Effectiveness
Online marketing has only been around for a few years but already has made a huge
impact on advertising. There have been few academic studies that attempt to demonstrate the
effectiveness of online advertising. There have been numerous studies conducted by agencies
and companies. One such study by the Interactive Advertising Bureau and Nielsen Net Ratings is
showcased in Advertising Age (Maddox 2004). Their findings suggest that search engine
marketing ads and contextually targeted online text ads can have a significant impact on
branding. The research studied the impact of search and contextual text ads on an array of brand
metrics, including aided brand awareness, unaided brand awareness, brand image association,
and purchase intent. The results indicated that the text ads caused a 23% lift in unaided brand
awareness among respondents who saw the ads compared with those who did not. There have
been few studies that look at search engine marketing specifically; the above results provide that
evidence that search engine advertising can be effective.
Cho (2003) also analyses banner advertising effectiveness. His study examines levels of
involvement in relation to online advertising, in this case banner advertising. He defines
voluntary exposure to the ad as someone who clicks on the banner itself. Based on Petty and
Cacioppo's Elaboration Likelihood model (1986), consumers in low involvement situations use
low levels of elaboration to process advertising messages and thus engage in the peripheral route
to persuasion, while consumers in high involvement situations have high elaboration levels and
engage in central route processing. The author used this theory as a basis for his research.
The findings of the study indicate that those with high product involvement were more
likely to click on the banner ad. The main managerial implication is that the consumer's level of
product involvement can be used to identify target audiences for advertising campaigns on the
10
internet. In addition, the study also found that the positive relationship between peripheral cues
(banner size, animation) and banner clicking were more prominent among those with low rather
than high product involvement. This study also adds evidence to the fact that levels of
involvement can play an integral in advertising response.
Manchanda et al (2006) study the effect of online advertising in relation to online
purchase. Their main research question is whether or not advertising affects purchasing patterns
on the internet. They measure the impact of banner advertising on current customers'
probabilities of buying again, while accounting for duration dependence. Some findings from
previous research indicate that click-through is a relatively poor measure of advertising
effectiveness because it results in a very small proportion of overall purchases. Also, banner
advertising has attitudinal effects and that clickthrough is a poor measure of advertising
response. They authors develop a model which investigate the purchase behavior of customers
who are exposed to banner advertising by the web site. A total of 13 weeks' worth of data were
collected for one web site.
The results show that exposure to banner advertising has a significant effect on internet
purchasing. As a managerial implication, campaigns should be designed such that customers are
exposed to fewer (and more consistent) creatives across many pages and web sites. The above
findings are noteworthy in our proposed study because online advertising has been proven to be
effective. Behavior can manifest itself into actual purchase and not just attitudinal change as
demonstrated above.
The previous studies help demonstrate the effectiveness of online advertising. They do
for the most part only consider banner advertising and search related advertising is largely
11
ignored. Our proposed study examines consumer search behaviour specifically. Advertisers can
place ads in relation to specific keyword queries users make; academic research on the
effectiveness of this kind of advertising strategy is lacking. Display advertising is also situated at
the exposure level in Scholten's hierarchy of effects paradigm; the impact of consumer search
behaviour further down the process has not been examined.
Interactivity
Another important stream of research that we consider is interactivity. Interactivity is of
importance in our study since the synergistic effect we will attempt to measure is interactive in
nature. Companies can respond to search queries by customers in an interactive fashion.
The first article we examine in this field comes from Liu and Shrum (2002). The authors
attempt to identify the key constructs around the notion of interactivity. There are three aspects
of interactivity that they identify. Active control is the voluntary and instrumental action that
directly influences the controller's experience. Two way communication which is reciprocal
communication and synchronicity which is the degree to which user's input into a
communication and the response they receive from the communication are simultaneous. There
is also a difference between structural and experiential interactivity. Structural interactivity refers
to the hardwired opportunity, or the real opportunity to engage in information exchange.
Experiential interactivity refers to the perception of interactivity. The authors also state that the
nature but also the level of interactivity can differ. The reason for their research is that previous
studies have shown inconsistency.
In their model of interactivity, user cognitive involvement is introduced. Interactivity
creates cognitively involved experiences through active control and two way communication.
The reason for this addition is that users are actively engaged in the communication process on
the internet. The authors offer several propositions as a program of research. The most
interesting proposition in relation to our research is P2 which states that two-way communication
is positively related to user cognitive involvement. This proposition might better help us
understand how interactive communication on a search engine is related to user involvement.
Another study of interest comes from Levy and Nebenzahl (2006). They examined
programme involvement and interactive behaviour in interactive television. Even though
interactive television is not part of our research, the interactive nature of the relationship between
involvement and interaction is of interest to us. Interactive television (ITV) is a form of
technology expected to grow in the years to come and advertisers have begun using this new
form of advertising. The authors state that the factors that influence how viewers process
television advertisements are: the attributes of the advertised product and the corresponding
advertisement messages, the medium that carries the advertisement and its environment and
attributes of the viewer and his or her state of mind while receiving the communicated
advertisement. Another principal element is the consumer's level of involvement with the
programme. High programme involvement may block mental processing of the advertisements
but the opposite approach is also examined. Appendix 6 shows the results of the study. Results
indicated that the likelihood of entering interactive behaviour is negatively impacted by the
viewer's involvement in the programme, but only after a certain threshold is passed. Important
managerial implications of this research are that the likelihood of entering into interactive
behaviour is determined by the media environment and the content of the advertisements in
13
relation to the interests of the target viewers. Also, the extent of interactive behaviour given that
the viewer entered that mode, is determined solely by the content of the ads in relation to the
interests of the interactive viewers. This outcome is of interest to our study, programme
involvement is a mediating variable that needs to be considered. Interactive behaviour will occur
in an online setting but might be influenced by programme type and content of the ad.
Unfortunately, this is a key limitation to our study since user involvement is not measured.
A study by Fortin and Dholakia (2005) focuses on how new media are similar and/or
different from traditional media and how these differences might influence advertising
effectiveness. Fortin and Dholakia state that the web gives users the ability to respond and react
to advertisements which changes the traditional parameters of advertising. They define
interactivity as: the degree to which a communication system can allow one or more end users to
communicate alternatively as senders or receivers with one or many other users or
communication devices, either in real time (as in video teleconferencing) or on a store and-
forward basis (as with electronic mail), or to seek and gain access to information on a on-demand
basis where the content, timing and sequence of the communication is under control of the end
user, as opposed to a broadcast basis. They add vividness as a construct, vividness relates to the
breadth and depth of the message: breadth being the number of sensory dimensions, cues, and
senses presented (colors, graphics, etc.), and depth being the quality and resolution of the
presentation. They propose the model of the impact of interactivity on advertising effectiveness
(Appendix 7).
The results supported that there is a positive relationship between the degree of
interactivity of an advertisement and the social presence it conveys; the most significant impact
of interactivity is on social presence. The most important result for our study is that vividness
14
and interactivity both impacted social presence and indirectly, involvement. Thus, web
advertising can be seen to impact attitude change and is an important channel for marketing
communication.
Search marketing ads are also based on relevance. Marketers can adjust their ads based
on the results they obtain thus attempting to increase the relevance of each ad. In terms of the
hierarchy of effects paradigm, marketers can help stimulate behavior by being present during
consumer searches related to their products. They can also engage with consumers in an
interactive fashion by optimizing their ads in order to increase relevance.
Cross-Channel Effects
The last line of research that will be examined, but perhaps the most crucial to our
research is cross-channel effects. Since we will be looking at the effects of several different
channels on consumer behavior, we must first examine previous academic research in this area.
One of the first studies to examine synergistic effects across media channels was from
Edell and Keller (1999). They studied the effects of a coordinated TV-print media campaign on
consumers' comprehension and evaluation of advertising. The results of their research
demonstrated that a coordinated television and print media strategy led to greater processing and
improved memory performance than either television or print media alone. Also, the nature of
the processing in the respondent's mind depended on the exposure order. Several important
managerial implications were put forth. A print reinforcement strategy that links a print ad to an
existing television ad that has been seen, can improve the chance of the print ad being read. The
process is mediated by consumer motivation, ability and opportunity to read the ad. This result
15
adds to our theory that web and TV will create better recall and thus more action on the part of
the consumer in an online setting.
Chang and Thorson (2004) study the synergistic effects of television and the internet.
The goal of their study was to test the above effects and to compare the information processing
model of synergy with that of repetition. The study integrates television and web advertising
since more and more of these two channels are used in conjunction. They base their research on
Edell and Keller (1999) discussed above and Putrevu and Lord (2003); these last two authors
suggested that a second exposure to a novel stimulus containing similar information will attract
more attention than exposure to the same stimulus. The results showed that TV Web synergy did
produce an effect that was superior to the repetitive ad condition. The synergistic effects on
perceived ad credibility, brand credibility, attitude toward the ad, attitude toward the brand and
purchase intention were not found. Little impact on the consumer's affective and conative was
noted, but more cognitive impact and finally higher overall processing were found.
Naik and Raman (2003) studied the impact of synergy in multimedia communications.
They state that integrated marketing communications (IMC) emphasize the benefits of
harnessing synergy across multiple media to build brand equity of products and services. They
define synergy as the combined effect of multiple activities exceeds the sum of their individual
effects. The authors wish to answer if synergy moderates the effect of advertising carryover and
they wish to analyze theoretically the effects of synergy in multimedia communications.
Their resulting analysis presents evidence on the existence of synergy between television
and print advertising in consumer markets. They provide interesting insight into budget
allocation for advertisers.
Finally, we examined Briggs, Krishnan and Bonn (2005) which conducted a case study
on a real advertising campaign by Ford and its F-l 50 pickup truck. Ford was launching the F-
150, their highest selling and most profitable truck and wanted to be able to measure the return
on their investment. In multi-channel marketing, traditional media is experiencing declining
audiences due to fragmentation of media channels and the rise of non-traditional channels the
authors conclude. Online advertising on the other hand, is becoming a powerful new medium for
driving sales through multiple channels delivering high-impact targeted messages and building
brands.
The results showed the highest cost per impact is generated on television. The lowest was
online. Some of the key learnings from the campaign analysis were: advertising works, but the
price of some media has been bid up to make it inefficient compared to alternatives, and TV
generates the greatest level of absolute reach and produces high levels of purchase-consideration
impact, but is less cost effective compared to magazine and online.
This case study is important because it demonstrates that cross-channel marketing is
being currently used and being analysed not just in silos but congruently with other channels.
The previous academic research helps us understand the synergistic effects across different
media. For our research, claiming that there are synergies between search behaviour and
multiple advertising channels will not be breaking new ground. Consumers move from exposure
to retention to behaviour when exposed to multiple channels based on the extant literature. We
will attempt to narrow our focus on behavioural changes in an online setting.
17
Chapter 3 - Proposal of New Research
In this section, we will propose new research in the area of cross-channel advertising and
advertising effectiveness.
The literature review helped us establish that advertising can impact consumer behavior
(exposure to retention to behavior). Traditional channels such as television as well as online
display advertising have been proven to stimulate behavioral changes. We turn our attention to
behavioral shifts online in particular brand searching behavior.
The proposed research will focus on multiple advertising channels and its effect on online
search habits. The proposed conceptual model is as follows:
Exposure to: - Television Ach ertis - Radio Advertising - Online Advert - PR Messages
sing
ng Consumer
In relation to the hierarchy of effects paradigm, we wish to study the link between
exposure and behavior. We seek to uncover the specific behavioral effects that occur in an online
setting. Specifically, the impact of brand searching behavior is of particular interest. Does
advertising exposure lead to brand searching behavior? This question is important to understand
given multiple channel advertising today. The causal link between advertising exposure and
search behavior has yet to be fully studied - in particular when it applies to brand searching.
Consumers are looking for a company's brand (behavior), how does traditional advertising
(exposure) play a role in this reality?
18
Hypotheses
The extant literature on the subject of cross-channel effects on online behavior is relatively
nascent. The effects examined in our study have not been previously tested.
HI: The number of search engine queries for a company's branded keywords is a function of the
exposure to advertising placed in more than one medium (television, radio, online).
H2: An increase in total advertising expenditure will lead to increased searches for the
company's brand online.
Based on Chang and Thorson*s research (1999), multiple message sources enhance message
credibility. They found that if a person is exposed to multiple message sources, they will hold
positive responses towards that message. Harkins and Petty (1987) also find similar results;
multiple sources lend credibility versus a single source. Our study looks at this process one step
further and examines the subsequent effect of multiple advertising sources on online search
behavior. The online search behavior signifies queries on the major search engines for that
company's branded keywords. This synergistic effect is examined using existing data from
actual advertising campaigns. All concurrent advertising campaign data was collected and
compared against their online search behavior.
Furthermore, several additional hypotheses are tested for each medium
H3: An increase in television advertising will lead to increased searches for the company's brand
online.
H4: An increase in radio advertising will lead to increased searches for the company's brand
online.
19
H5: An increase in online advertising will lead to increased searches for the company's brand
online.
Additional metrics from the company's web site were also captured; we will evaluate our
hypotheses on these metrics as well.
H6: An increase in advertising exposure will lead to increased organic clicks
We hope to uncover using time series analysis any short-term and long-term effects of
advertising exposure on the above hypotheses.
Data Collection Methodology
Data from a Canadian telecommunications company was gathered from January 1st, 2007 to June
30, 2008.
Television Advertising: The company employs television advertising on an almost continuous
basis to help promote its products. Impression, cost and GRP (gross rating points) data were
collected. Cost refers to the media cost for each television spot. Impressions refer to the
estimated number of viewers of the television program in question. Data from all the Canadian
markets and various business units were aggregated for this study
Radio Advertising: Radio advertising is also used consistently. Impressions and cost data were
also captured. The data was aggregated from market specific data.
Online display Advertising: Online display refers to banner advertising on various web sites the
company chose to advertise on. Impressions are counted each time the banner loads on person's
browser.
20
Pay per click Advertising: Pay per click advertising or PPC refers to the sponsored results on a
search engine. An advertiser can pay to have their listing appear when a person searches for a
relevant keyword. A cost is only incurred from a person clicks on the company's listing. Data
was collected from Google, Yahoo and MSN. Impressions, clicks, cost and sales were collected.
Impressions refer to the number of times the advertiser's paid listing appeared alongside the
users' queries. The total number of impressions is also able to be extrapolated from the search
engines. Thus, an accurate idea of the total number of impressions was collected. Clicks refer to
the number of times users' clicked on the advertiser's sponsored results. Sales data is obtained
from each person's click as well. Each time someone clicks a cookie is installed on their browser
and thus the sale can be tracked.
Organic clicks: In addition to paid traffic, natural search engine traffic was measured. Using the
company's web analytics tool, visits coming from non-paid search were gathered.
Online site sales: Total online sales from the web site from the web analytics tool were
collected. A sale refers to a completion and validation of a person making a purchase of any of
the company's product on the site.
Press Release data: Using Google News the number of online articles that mentioned the
company's name was collected. This piece of information is useful because it also indicates
popularity of the company during any given week.
Control Data: Several additional sources of data were collected to serve as a control. Wages,
salaries and supplementary labor income, personal disposable income, and personal expenditure
on consumer goods and services were all collected from Statistics Canada.
21
Chapter 4 - Results
In this section, we will discuss the methodology employed to analyze the data and the
specific results obtained for each of our hypotheses.
Here is an overview of the methodology employed for the analysis:
1) Conducting Unit Root tests to determine whether or not data is stationary over time
2) Estimating the vector auto-regression models
3) Generating corresponding impulse response functions which examines the effect of a one
standard deviation shock to one of the endogenous variables - in this case marketing
spend or media impressions (Dekimpe et al, 1999). T-tests were then conducted.
Results
The VARX models tested the five hypotheses proposed earlier. Below are the results for each.
H I : Brand impressions in relation to paid media impressions
Figure 4.1: IRF - Total Impressions on Branded keywords in response to Total Media Impressions
Response of D(PS_TOTIMP) to TOTALJMPS
120000
80000
400004
-40000
-80000
Immediate Effect
Adiustment Period
Permanent Effect
1—i—i i i i i—i—i—i i i—i—i—i—i—i—i—r 2 4 6 3 10 12 14 16 18 20
22
There is an immediate effect of total marketing impressions on branded keyword
impressions which lasts two weeks as shown above in the impulse response function. According
to Pauwels et al 2002, the adjustment period refers to the period between the immediate response
and the time where the effect returns to normal. This type of analysis has been conducted for
price promotions but does apply to customer research behavior as well.
The adjustment period lasts for 9 periods and we see increased customer reaction on the
search engines as well. The permanent effect is minimal and is perhaps due to the fleeting nature
of advertising messages; they make an immediate impression on a person's consideration set.
The significance was calculated using a t-test, the cutoff point was 1.0. For HI, the t-test was
1.21; thus this hypothesis was deemed significant.
Elasticity was also calculated - the net effect during week two was -0.0039; this was the
largest elasticity from the hypotheses tested. Paid media impressions from all different media
channels combined influenced brand queries to the largest extent.
23
Figure 4.2: Elasticity of Total Brand Impressions vs. Total Media Impressions
Elast ic i ty - T o t a l B rand Impress ions v s . T o t a l Media Impress ions
0 . 0 0
0 .00
Elast ic i ty
H I : Brand impressions in relation to paid media expenditure
Figure 4.3: IRF - Total Impressions on Branded keywords in response to Total Media Expenditure
Response Of D(PS_TOTIMP) to TOTAL_MKTG_SPEND
120000-
80000
40000
-40000 ~i—i—i—i—i—i—i—i—i—i—i—i—i—i—i—i—i—r 2 4 6 8 1 0 1 2 1 4 1 6 1 8 20
24
Figure 4.3 displays results from the test of marketing expenditure's effect on brand
keyword searches. Total marketing expenditure had a similar impact as media impressions on
branded keyword searches though to a lesser extent. The t-test result was 1.09 and was also
significant.
The elasticity at week two was -0.33, (figure 4.4). This is the second highest of the
hypotheses tested. Marketing spend as a whole did have a significant impact on customer search
behavior.
Figure 4.4: Elasticity of Total Brand Impressions vs. Total Marketing Spending
E l a s t i c i t y - T o t a l B r a n d Im p r e s s i ons v s . T o t a l M e d ia S p e n d
(0 .0 5 )
( 0 . 1 0 )
( 0 . 1 5 )
(0 .2 0 )
( 0 . 2 5 )
(0 .3 0 )
(0 .3 5 )
(0 .4 0 )
5 7 9 1 1 1 3 1 5 17 1 9
- E l a s t i c i t y
25
H3: Brand impressions in relation to television impressions
Figure 4.5: IRF - Total Impressions on Branded keywords in response to Television Impressions
R e s p o n s e of D(PS_TOTIMP) to TV^AUDIENCE
120000 -r
80000
400004
-40000 4
-80000 2 4 6 8 10 12 14 16 18 20
Television impressions had an impact on brand search behavior during the first 10
periods. Interestingly, there is a peak followed by a valley. The elasticity was 0.0003 at the
second period which resembles the marketing expenditure & impressions elasticity. The overall
impact of television is significant as well with a t-test of 1.89.
Television exposure has a fairly long term effect on search behavior. The message
delivered has much more impact than other types of advertising messages. A 30 second spot
allows people that are interested in the brand to obtain valuable product information with two
senses, sight and sound. The result is a longer term effect on brand searching behavior.
26
Figure 4.6: Elasticity of Total Brand Impressions vs. Total Television Impressions
Elas t i c i t y - T o t a l B r a n d I m p r e s s i o n s v s . Te lev i s ion Im p ress ions
0 . 0 0 1 0 0
0 . 0 0 0 5 0
( 0 . 0 0 0 5 0 )
( 0 . 0 0 1 0 0 )
( 0 . 0 0 1 5 0 )
( 0 . 0 0 2 0 0 )
( 0 . 0 0 2 5 0 )
( 0 . 0 0 3 0 0 )
( 0 . 0 0 3 5 0 )
( 0 . 0 0 4 0 0 )
- E las t i c i t y
H4: Brand impressions in relation to radio impressions
The effect of radio exposure on branded keyword searches was noted during the first 4
periods followed by a subsequent drop off. The adjustment period is less significant than
marketing impressions, expenditure and television impressions.
Figure 4.7: IRF - Total Impressions on Branded keywords in response to Radio Audience
Response of D(PS_TOTIMP) to RADIO_AUDIENCE
120000-
80000-
40000 -
n
-40000-
-80000 -
\
1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 2 4 6 8 10 12 14 16 18 20
27
Figure 4.8: Elasticity of Total Brand Impressions vs. Radio Audience
Elas t ic i t y - T o t a l B r a n d I m p r e s s i o n s v s . Rad io A ud ience
0 . 0 0 0 5 0
( 0 . 0 0
(0 .0 0
( 0 . 0 0
( 0 . 0 0
( 0 . 0 0
( 0 . 0 0
( 0 . 0 0
( 0 . 0 0
(0 .0 0
0 5 0 )
1 0 0 )
1 5 0 )
2 0 0 )
2 5 0 )
3 0 0 )
3 5 0 )
4 0 0 )
4 5 0 )
9 11 13;s 15 171 -16
This variable had the same elasticity as the television during the first period but it rapidly
drops off. The t-test yielded a result of 0.51 and we concluded that the overall impact of radio
was not significant.
H5: Brand impressions in relation to online advertising impressions
Figure 4.9: IRF - Total Impressions on Branded keywords in response to Online Display Impressions
Response of D(PS_TOTIMP) to ONLDISJMPS
150000
100000 J
50000
-50000 2 4 6 8 10 12 14 16 18 20
28
Online display advertising had a significant impact on searching behavior as illustrated
by the impulse response function (Figure 4.9) and the elasticity chart (Figure 4.10). The effect
was more pronounced than television and radio exposure. The t-test showed a result of 1.52 and
can be deemed significant.
The result implies that online advertising engages people more than traditional media
does. The fact that a person is already online surfing the web is a plausible explanation. A person
exposed to display advertising and that is engaged with the message can much more easily
search for related brand information since they are already online. The immediacy of the
message is facilitated by the channel's interactive nature. In addition, the long term effect
resembles that of television's which implies that online can also stimulate a change in search
behavior over a long period of time.
Figure 4.10: Elasticity of Total Brand Impressions vs. Online Display Impressions
Elasticity - T o t a l Brand Impressions vs.Display Impressions
0.0040
0.0020
Elasticity
29
H6: Organic Clicks in relation to advertising exposure
Figure 4.11: IRF - Total Organic Clicks in response to Total Media Impressions
Response of D(ORG_CLICKS) to TOTALJMPS
12000-. 1
8000-
4000-
o- "'"""""""""""""""';;;^;;;;;v:;;'.;:::::;v:-:-.v----
" 4 0 I - I 0 " T — i — i — i — i — i — i — i — i — i — i — i — i — i — i — r n — i — i — 2 4 6 3 10 1 2 1 4 1 6 1 8 20
We also measured the effect of total marketing impressions on organic search traffic. The
impulse response function (Figure 4.11). Organic traffic was not significantly impacted by total
marketing impressions; the t-test was 0.59 and not significant.
Organic clicks measures all visitors coming from a search engine regardless of keyword
category and is not paid for. A more in depth analysis can be conducted on organic traffic by
examining the keyword category (i.e. branded versus generic). This would examine whether only
branded keywords saw a lift or if general keywords (i.e. cell phone) also saw a lift.
30
Figure 4.12: Elasticity of Total Organic Clicks vs. Media Impressions
Elast ic i ty - O r g a n i c Cl icks vs .Med ia Impressions
- Elasticity
(0 .00002
Figure 4.13 summarizes the results of each of the six t-tests. The cut off point used was
1.0. Radio exposure was not found to be significant. The impact of media impressions on organic
clicks also did not yield significant results.
Figure 4.13: T-Test Results for Each Hypothesis
Channel Tested
Total Marketing Spend
Total Marketing Impressions
Television Impressions
Radio Impressions
Online Display Impressions
Organic Clicks
T-Statistic
1.21
1.09
1.89
0.51
1.52
0.59
Significant?
Yes
Yes
Yes
No
Yes
No
31
Chapter 5 - Discussion and Implications
This chapter will discuss the results found in our study, the methodological limitations
and important implications/applications for marketers. We will conclude with suggestion of
future studies.
The effect of cross-channel advertising online is a relatively new field of study. No
previous study has attempted to examine the effect of offline advertising's impact on search
behavior online. This paper took the first step by examining long term and short term effects of
offline and online advertising on search behavior, more specifically searches for the advertiser's
brand on search engines. The adjustment period and total effects of advertising were examined
on brand search queries.
Main results
Figure 4.14 shows the results of each of the tested hypotheses. Total marketing
impression, total marketing expenditure, television and online display exposure were found to
have significant impacts on brand searches. Radio exposure did not meet our significance test
minimum. The impact of total marketing impressions on organic clicks was also found to not be
significant.
Figure 4.14: Results of Each Hypothesis
Hypothesis Tested
Hyp 1: The number of search engine queries for a company's branded keywords is a function of the exposure to advertising placed in more than one medium
Hyp 2: An increase in total advertising expenditure will lead to increased searches for the company's brand online.
Hyp 3: An increase in television advertising will lead to increased searches for the company's brand online.
Hyp 4: An increase in radio advertising will lead to increased searches for the company's brand online.
Hyp 5: An increase in online advertising will lead to increased searches for the company's brand online.
Hyp 6: An increase in advertising exposure will lead to increased organic clicks
Supported?
Yes
Yes
Yes
No
Yes
No
This study found that there is a significant short-term increase in queries of the brand and
that this increase does not sustain itself over time for four of the channels that were tested. Total
marketing spending and total advertising impressions had the greatest short-term impact on
brand queries. The adjustment time only lasted three time periods (weeks) and then leveled off.
The elasticity was greatest during the first three time periods.
The same was found for television and online display's effects on brand search although
to a lesser extent. The total effects of all the advertiser's efforts sustained a lift in brand queries
albeit for a short period of time. The effect of online display advertising was more pronounced.
The immediacy of the medium allows searches for the brand to occur much more readily than
through traditional channels.
33
Marketing Implications
Given this short term impact on search engine behavior, marketers must be aware of this
short-term effect and plan their search marketing media presence accordingly. The recognition of
this change in consumer behavior must be seen as an opportunity to provide additional
information to potential customers searching for your brand. Customers once exposed to
traditional and online advertising have a tendency to search for additional brand information
using the search engine of their choice.
Marketers must better understand this dynamic and be ready to capture these customers
further down the purchase consideration process. Sholten's hierarchy of effects model shows that
customers move from awareness to retention to behavior. This study has shown that awareness
through traditional advertising channels helps customers move down to actual behavior. The
behavior in question is brand searching online. This represents an important finding for the
advertising and marketing community since it helps better understand how customers seek out
information on their own using online platforms.
Marketers cannot be content with just using regular channels to capture customers.
Customers are no longer passive; they actively seek out information before committing to buy
from a company. Marketers must be ready to use new media channels to present additional
product information, purchase incentives to satisfy customers' need to better understand the
product they are interested in buying.
34
Managerial Applications
Marketers must ensure that messages are consistent across the different advertising
channels. If a promotional offer is presented in a television ad, it must be also promoted with the
paid search ad. This will ensure an integrated marketing campaign and that the message remains
consistent throughout the customer experience.
In addition, marketers must be cognizant of the fact that large advertising campaigns will
drive more traffic to their web site and this additional traffic must be able to be sustained through
the company's servers.
Given this increase in customer interest in a company' brand, marketers can seize this
opportunity to present additional purchase incentives. Customers that are looking for a
company's brand are more likely to be ready to purchase than customers looking for more
general keywords. Thus, marketers can present additional offers or even just store location
information to help these customers purchase their products. This can be done on the landing
page the traffic is being directed to.
An important implication of this study is that firms must seek out to maximize brand
related queries with their marketing endeavors. Since brand queries are known to occur during
the short term, firms must design their media plans to maximize customer search behavior
immediately. This can be done by proposing additional information on the company's website.
Marketing materials must then clearly expose the company's URL so that customers will
be able to either go to the site directly or use their preferred search engine to reach it. In addition,
35
the various advertising components can be timed together to generate more visibility and thus
increase brand search potential. If multiple media channels are running at the same time, for
example television used in conjunction with online display, the chances of a customer seeing the
ad and searching increase. A firm's search marketing initiative must be prepared to face the
increased demand for brand related terms and also be able to explain the increased results. Finns
must be aware of the synergistic effects that media have with searching behavior and attempt to
capitalize on it as much as possible. Customers looking for a firm's product information are key
in aiding sales and revenue. Firms should focus on providing product - service information as
soon as customer intent is made known.
Limitations
There are several limitations of our study which we will examine here. Firstly, user
involvement with the advertising message in question was not captured. The relevance of the
advertising message to the person is not captured by the data. Using only secondary data does
not permit us to examine whether or not the actual message did resonate with the person.
Aggregation of the data permitted the time series analysis but an exact correlation cannot be
determined.
Current brand awareness might impact how the person perceives the brand and thus their
searching behavior. A less well known brand might not display the same effect - thus replicating
the study with a different brand from a different industry will help validate the results.
36
Existing customers looking for the company's brand are also not precisely measured. A
certain amount of the brand queries might have originated from existing clientele thus
eliminating the need to advertise directly to them. This is a reality of any advertising initiative.
Possible Future studies
Out study examined the telecommunications industry specifically. As an additional
means of supporting our findings, a similar study can be replicated using a different industry
entirely. Customer search behavior might vary across different industries and it would be
important to verify that these results hold true across different products and services.
Possible future studies in this area might involve looking at web analytics data more in
depth to understand the quality of each visit on the company's site. Looking at this web data will
help better understand the behavior of the visitors that came from a web search versus the rest of
the visitors coming from different channels.
37
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39
Appendix
Appendix 1 - Where users go to research before completing an offline purchase. (Google
2004)
Source: Google/Jupiter Research Survey 2004
Searc h Engine
Merchant S ite
Manu fac tu re r Site
Friend's A dvice
Directory Site
Portal
Consumer Report Site
Comparison Site
Print N ewspaper
Yellow Pages
Print Magazine
TV
A u c t io n S it e
Y ellow Pages Site
R adio
News S it e
180%
1 4 %
122%
I 1 7 %
I 41 %
§ 3 7 %
| 36%
I 36%
B 3 5 %
| 32%
I 32%
I 31 %
150%
[ 7 5 %
165%
1 5 9 %
0 % 10% 2 0 % 3 0 % 4 0 % 5 0% 3 0 % 7 0% 50% 90%
40
Appendix 2 - Global Expenditure by Medium (Source Zenith Optimedia, 2007)
Global advertising expenditure by medium
US$ million,
Newspapers Magazines Television Radio Cinema Outdoor internet Total
current prices car 2005
119.269 52.772 150.881 34.382 1.740
21.306 13,727
399,577
-e.'ioy conversion at 2005 average rates.
2006
123.405 54.604 160.670 35.334 1,836
23.775 24.385
424,008
2007
126.191 56,445 167,823 36,347 1,950
25,483 31,271
445,511
2008
130.231 58,626 178,735 37,503 2,135
27,396 37,910
472,536
2009
133,719 61,154 186,412 39,105 2,356
29,437 42,912 495,145
Share of total
Newspapers Magazines Television Radio Cinema Outdoor Internet
adspend by 2005
29.8 13.2 37.8 3.6 0.4 5.5 4.7
medium 2005-2009 2006
29.1 12.9 37.9 8.3 0.4 5.6 5.8
(%) 2007
28.3 12.7 37.7 8.2 0.4 5.7 7.0
2008
27.6 12.4 37.8 7.9 0.5 5.3 8.0
2009
27.0 12.4 37.6 7.9 0,5 6.0 8.7
41
Appendix 3 - Revised Information Processing Model (Scholten 1999)
Source:
Kho Cocrenunicat.es?
Message:
What Is Communicated
{Substance)? How Is It
Communicated {Style}?
Channel:
Where, When, And How
Is The Communication
Transmitted?
Receiver:
At whom Is The
Conamm i ca t ion
Targeted?
Behavior
Retention A ;
P&rsuasion
Reception
| I Exposure if s - — - - -
What Is The
Target Effect Of
The Communication?
42
Appendix 4 - Results from DRTV Effectiveness Study (Danaher, Green 1997)
TABLE 2 Characteristics of Direct Response Television Advertisements
Percent of Advertisements
Bush and Present Stud/ Bush, 1990
in = 722)* (31 (n = 709)
Time of Day Morning (6 a.m.-noon} Afternoon (noon-6 p.m.) Primeti'me (6 p.m.-10:30 p.m.) Fringe time/Late night f! 0:30
p.m.-6 a.m.) Day of week
Sunday Monday Wednesday
Type of Advertisement National Local
Classification of Product Product Service
Program Type Documentaiy Soap opera Variety Comedy Sport Movie Drama News
25.9 43.4 12.3
8.4
28.1 39.9 32.0
82.6 17.4
47.0 53.0
21.3 7.1 9.1 S.O
I I I 13.7 13.4
38.8 22.6 15.5
23.1
2 1.2 44.7 34.1
80.3 19.7
44.3 55.7
Appendix 5 - Model of Information Processing for Banner Advertisements (Yoon 2003)
Beha«!©«f Goes Level of information processing Key effects
Detection of banner advert
Jotioe of advert format
identification 3* advert content
P ><-.,. if , , • s ,» i •>•
j' c o w »*it"_'..au"=
're-attention
Focal attention
Comprehension
Elaboration
Banner style, size, and location is important
Advert format (text or (mage) affects mental imager/
« * - i - r f
>>• 'r t t n r« s
•* ~> a n t-
i i n " > e s *
r •( t r t o
t c -i * r.
»K
* e
> P
i
Me
#e
J
Si
u 6
i- »-' jc r^ l i
i & >t.a_,
<f-rt »ira*ten
• d^t t ' • es
effectiveness of advert
message?
click snten
purchase
> terms of
lion and
ntesition
Figure 1 A mode; of information pmcesssng level for Banner adve
44
Appendix 6 - Effect of Enduring and Situational Involvement on Interactive Behaviour (Levy and Nebenzahl 2006)
Figure 1: The joint effect of enduring and situational involvement on interactive behaviour - percentage of respondents exhibiting interactive behaviour with one or two advertisements
80
70
60
1 40
jz 30
20
10
n
—
67%
61%
l 1
^ ' • ' °
1
40%
1 u
Low situational Low situational High situational High situational involvement and involvement and involvement and involvement and
low enduring high enduring low enduring high enduring involvement involvement involvement involvement
45